| Literature DB >> 35052317 |
Bhakti Patel1, Amgad N Makaryus1,2,3.
Abstract
The tremendous advances in digital information and communication technology have entered everything from our daily lives to the most intricate aspects of medical and surgical care. These advances are seen in electronic and mobile health and allow many new applications to further improve and make the diagnoses of patient diseases and conditions more precise. In the area of digital radiology with respect to diagnostics, the use of advanced imaging tools and techniques is now at the center of evaluation and treatment. Digital acquisition and analysis are central to diagnostic capabilities, especially in the field of cardiovascular imaging. Furthermore, the introduction of artificial intelligence (AI) into the world of digital cardiovascular imaging greatly broadens the capabilities of the field both with respect to advancement as well as with respect to complete and accurate diagnosis of cardiovascular conditions. The application of AI in recognition, diagnostics, protocol automation, and quality control for the analysis of cardiovascular imaging modalities such as echocardiography, nuclear cardiac imaging, cardiovascular computed tomography, cardiovascular magnetic resonance imaging, and other imaging, is a major advance that is improving rapidly and continuously. We document the innovations in the field of cardiovascular imaging that have been brought about by the acceptance and implementation of AI in relation to healthcare professionals and patients in the cardiovascular field.Entities:
Keywords: artificial intelligence; cardiology; imaging; information technology; radiology
Year: 2022 PMID: 35052317 PMCID: PMC8776229 DOI: 10.3390/healthcare10010154
Source DB: PubMed Journal: Healthcare (Basel) ISSN: 2227-9032
Figure 1Artificial intelligence subsets into which the principles of AI can be divided.
Methodology of supervised and unsupervised learning within machine learning.
| Machine Learning Classification | Types of Problems Each Classification Is Used for |
|---|---|
Pertinent publications regarding artificial intelligence.
| Pertinent Publications Related to Artificial Intelligence in the Field of Cardiovascular Imaging | Findings in Publication |
|---|---|
| Improved accuracy of myocardial perfusion single-photon emission computed tomography [SPECT] for the detection of coronary artery disease using a support vector machine algorithm | Arsajani et al. found that the accuracy of predicting CAD with an MPI device improved significantly when in adjunct with a learning algorithm [ |
| Fully Automated Echocardiogram Interpretation in Clinical Practice | Zhang et al. determined 96% accuracy in identifying images with echocardiography [ |
| Machine learning of clinical variables and coronary artery calcium scoring for the prediction of obstructive coronary artery disease on coronary computed tomography angiography: analysis from the CONFIRM registry | Al’Aref et al.’s results showed a significantly more accurate assessment of obstructive CAD from CT imaging using machine learning with the coronary artery calcium score [ |
| Cardiac Imaging on the Cusp of an Artificial Intelligence Revolution | Laser et al. determined that the right ventricle reconstruction with echocardiography and cardiac MRI had more accuracy compared to the gold standard direct cardiac MRI [ |
Figure 2Cardiac imaging modalities that allow for the gathering of data that informs the formation of artificial intelligence that then is used for optimization of the evaluation of patients undergoing cardiac imaging.